利用人工智能探索不同结果的乳腺癌模式

N. Larburu, Mónica Arrúe, Naiara Muro, Roberto Álvarez, Jon Kerexeta
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引用次数: 1

摘要

乳腺癌是一种复杂的疾病,其特征是从临床、遗传或图像来源等多个数据来源获得的多个变量。在过去的几十年里,各种各样的研究都试图在这些数据的支持下预测乳腺癌的结果,在这个方向上取得了很大的进展。然而,只有少数报告描述了变量和结果之间的因果关系,例如不良事件和存活率,并且通常非常局限于特定的数据集。这项研究工作提出了一个新的系统,该系统使用数据挖掘和可视化分析工具以直观的方式描述与不同结果相关的模式,例如治疗反应和与治疗相关的不良事件。为此,该系统处理来自原发性乳腺癌真实环境的异质数据。通过这种方式,临床医生可以动态、快速、直观地探索某一组患者是否容易出现某一结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Breast Cancer Patterns for Different Outcomes using Artificial Intelligence
Breast Cancer is a complex disease characterized by multiple variables obtained from several data-sources, such as clinical, genetic or image sources. Over the past decades, various studies have tried to predict the outcome of breast cancer with the support of these data, and big advances have been done in this direction. However, only a few reports describe the causal relationships among the variables and outcomes, such as adverse events and survival rate, and usually they are very limited to a specific dataset. This research work presents a novel system that using data mining and visual analytics tools depicts in an intuitive way the patterns associated with different outcomes, such as treatment response and adverse events related to a treatment. For that the system processes heterogenous data coming from a real setting for primary breast cancer. This way clinicians can explore in a dynamic, fast and intuitive way whether certain group of patients are prone to certain outcomes.
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